FogROS: An Adaptive Framework for Automating Fog Robotics Deployment

Kaiyuan Chen, Yafei Liang, Nikhil Jha, Jeffrey Ichnowski, Michael Danielczuk, Joseph E. Gonzalez, J. Kubiatowicz, Ken Goldberg
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引用次数: 17

Abstract

As many robot automation applications increasingly rely on multi-core processing or deep-learning models, cloud computing is becoming an attractive and economically viable resource for systems that do not contain high computing power onboard. Despite its immense computing capacity, it is often underused by the robotics and automation community due to lack of expertise in cloud computing and cloud-based infrastructure. Fog Robotics balances computing and data between cloud edge devices. We propose a software framework, FogROS, as an extension of the Robot Operating System (ROS), the defacto standard for creating robot automation applications and components. It allows researchers to deploy components of their software to the cloud with minimal effort, and correspondingly gain access to additional computing cores, GPUs, FPGAs, and TPUs, as well as predeployed software made available by other researchers. FogROS allows a researcher to specify which components of their software will be deployed to the cloud and to what type of computing hardware. We evaluate FogROS on 3 examples: (1) simultaneous localization and mapping (ORB-SLAM2), (2) Dexterity Network (Dex-Net) GPU-based grasp planning, and (3) multi-core motion planning using a 96-core cloud-based server. In all three examples, a component is deployed to the cloud and accelerated with a small change in system launch configuration, while incurring additional latency of 1.2 s, 0.6 s, and 0.5 s due to network communication, the computation speed is improved by 2.6×, 6.0× and 34.2×, respectively. Code, videos, and supplementary material can be found at https://github.com/BerkeleyAutomation/FogROS.
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FogROS:用于自动化雾机器人部署的自适应框架
随着许多机器人自动化应用越来越依赖于多核处理或深度学习模型,云计算正在成为一种有吸引力且经济上可行的资源,用于不包含高计算能力的系统。尽管它具有巨大的计算能力,但由于缺乏云计算和基于云的基础设施方面的专业知识,机器人和自动化社区往往没有充分利用它。Fog Robotics在云边缘设备之间平衡计算和数据。我们提出了一个软件框架FogROS,作为机器人操作系统(ROS)的扩展,ROS是创建机器人自动化应用程序和组件的事实上的标准。它允许研究人员以最小的努力将他们的软件组件部署到云端,并相应地获得额外的计算核心、gpu、fpga和tpu,以及其他研究人员提供的预部署软件。FogROS允许研究人员指定他们的软件的哪些组件将部署到云上,以及部署到哪种类型的计算硬件上。我们在3个例子上对FogROS进行了评估:(1)同步定位和映射(ORB-SLAM2),(2)基于灵巧网络(Dex-Net) gpu的抓取规划,以及(3)使用96核云服务器的多核运动规划。在所有三个示例中,将组件部署到云中并通过对系统启动配置的微小更改进行加速,虽然由于网络通信而产生1.2 s, 0.6 s和0.5 s的额外延迟,但计算速度分别提高了2.6倍,6.0倍和34.2倍。代码、视频和补充材料可在https://github.com/BerkeleyAutomation/FogROS上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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